Zhang Jiwei, Newhall Katherine, Zhou Douglas, Rangan Aaditya
Courant Institute of Mathematical Sciences, New York University, New York, USA.
J Comput Neurosci. 2014 Apr;36(2):279-95. doi: 10.1007/s10827-013-0472-6. Epub 2013 Jul 13.
Randomly connected populations of spiking neurons display a rich variety of dynamics. However, much of the current modeling and theoretical work has focused on two dynamical extremes: on one hand homogeneous dynamics characterized by weak correlations between neurons, and on the other hand total synchrony characterized by large populations firing in unison. In this paper we address the conceptual issue of how to mathematically characterize the partially synchronous "multiple firing events" (MFEs) which manifest in between these two dynamical extremes. We further develop a geometric method for obtaining the distribution of magnitudes of these MFEs by recasting the cascading firing event process as a first-passage time problem, and deriving an analytical approximation of the first passage time density valid for large neuron populations. Thus, we establish a direct link between the voltage distributions of excitatory and inhibitory neurons and the number of neurons firing in an MFE that can be easily integrated into population-based computational methods, thereby bridging the gap between homogeneous firing regimes and total synchrony.
随机连接的脉冲神经元群体展现出丰富多样的动力学特性。然而,当前的许多建模和理论工作都集中在两种动力学极端情况:一方面是神经元之间弱相关性所表征的均匀动力学,另一方面是大量神经元同步放电所表征的完全同步。在本文中,我们探讨了如何在数学上表征介于这两种动力学极端之间出现的部分同步“多次放电事件”(MFE)这一概念性问题。我们进一步开发了一种几何方法,通过将级联放电事件过程重铸为首次通过时间问题,并推导适用于大量神经元群体的首次通过时间密度的解析近似,来获得这些MFE的幅度分布。因此,我们在兴奋性和抑制性神经元的电压分布与MFE中放电的神经元数量之间建立了直接联系,这种联系可以很容易地整合到基于群体的计算方法中,从而弥合均匀放电状态和完全同步之间的差距。